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Uncertainty analysis of energy and economic performances of hybrid solar photovoltaic and combined cooling, heating, and power (CCHP + PV) systems using a Monte-Carlo method

机译:使用蒙特卡洛方法对混合太阳能光伏和混合制冷,供暖和发电(CCHP + PV)系统的能源和经济性能进行不确定性分析

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This study examines the impacts of uncertainties in energy demands and solar resources on the energy and economic performances of hybrid solar photovoltaic and combined cooling, heating and power (CCHP + PV) systems with variations in PV penetration levels. This study investigates two models: a deterministic and stochastic model. The deterministic model uses hourly demands of the U.S. Department of Energy (DOE) reference large office building in San Francisco, CA and solar irradiance profiles in the Typical Meteorological Year (TMY) data as the independent variables. The stochastic model accounts for uncertainties in these independent variables using a Monte-Carlo method. The results show that regardless of PV penetration levels, the uncertainties in building energy demands and solar irradiance marginally influence the energy performance of CCHP+ PV systems; however, they can notably increase annual operating costs up to $75,000 per year (13%). The annual cost increase is mainly attributed to a significant increase in demand charges (up to $79,000 per year). The demand charges tend to increase with higher uncertainties in the peak demand. The results suggest that in cases of the demand charge being responsible for a large portion in electricity bills (i.e., demand tariffs), a deterministic model tends to underestimate operating costs of CCHP+ PV systems or other analogous distributed energy systems compared to a stochastic model. The errors with the deterministic model can become more extreme when demand charges outweigh energy charges.
机译:这项研究探讨了能源需求和太阳能资源的不确定性对混合太阳能光伏和混合制冷,供暖和发电(CCHP + PV)系统(具有不同的PV渗透水平)的能源和经济绩效的影响。这项研究调查了两个模型:确定性模型和随机模型。确定性模型使用美国能源部(DOE)在加利福尼亚州旧金山的大型办公楼的小时需求以及“典型气象年(TMY)”数据中的太阳辐照度剖面作为自变量。随机模型使用蒙特卡洛方法解释了这些自变量的不确定性。结果表明,无论PV渗透水平如何,建筑能量需求和太阳辐照度的不确定性都会轻微影响CCHP + PV系统的能源性能;但是,他们可以将每年的运营成本显着提高至每年75,000美元(13%)。年度成本增加主要是由于需求费用的大幅增加(每年最多79,000美元)。随着高峰需求的不确定性增加,需求收费趋于增加。结果表明,在需求费用占电费的很大一部分(即需求电价)的情况下,与随机模型相比,确定性模型往往会低估CCHP + PV系统或其他类似分布式能源系统的运营成本。当需求费用超过能源费用时,确定性模型的错误可能变得更加极端。

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